EG 2017 - Short Papers
Permanent URI for this collection
Browse
Browsing EG 2017 - Short Papers by Subject "I.3.3 [Picture/Image Generation]"
Now showing 1 - 1 of 1
Results Per Page
Sort Options
Item Ambient Occlusion Baking via a Feed-Forward Neural Network(The Eurographics Association, 2017) Erra, Ugo; Capece, Nicola Felice; Agatiello, Roberto; Adrien Peytavie and Carles BoschWe present a feed-forward neural network approach for ambient occlusion baking in real-time rendering. The idea is based on implementing a multi-layer perceptron that allows a general encoding via regression and an efficient decoding via a simple GPU fragment shader. The non-linear nature of multi-layer perceptrons makes them suitable and effective for capturing nonlinearities described by ambient occlusion values. A multi-layer perceptron is also random-accessible, has a compact size, and can be evaluated efficiently on the GPU. We illustrate our approach of screen-space ambient occlusion based on neural network including its quality, size, and run-time speed.